More about HKUST
Bridging Data Analysis and Communication with Human-AI Collaboration
PhD Thesis Proposal Defence
Title: "Bridging Data Analysis and Communication with Human-AI Collaboration"
by
Mr. Haotian LI
Abstract:
Working with data has become common across various disciplines, from natural
science to business. For these data workers, communicating data insights and
knowledge from data analysis through data stories plays a crucial role in
enhancing collaboration in teams and raising public awareness. However,
creating clear, coherent, and engaging data stories requires diverse skills and
considerable time for human authors. To address this challenge, this thesis
investigates how to introduce artificial intelligence (AI) to effectively
reduce human effort and streamline data analysis and communication.
In the first part of this thesis, we built theoretical foundations for human-AI
collaboration in bridging data analysis and storytelling. We conducted an
interview study to gain insights into the expected AI roles and challenges when
telling data stories. Based on the findings from the interview, the human-AI
collaboration in data storytelling tools is formalized as a framework with two
dimensions: the roles of collaborators and the stages of collaboration. With
the framework, various insights and opportunities in designing human-AI
collaborative tools are unveiled through a comprehensive literature review.
The second part of this thesis presents research on instantiating the theories
into interactive tools for real-world applications. First, we designed Notable
to bridge data analysis and data storytelling in computational notebooks with
on-the-fly assistance, including automatic data fact documentation, story
organization, and slide creation. Our second work will explore enhancing the
alignment between humans and AI in story organization with meta relations,
which delineate connections between data story pieces using meta information
beyond datasets, such as domain knowledge and narrative intent.
With the two parts of this thesis, we hope to contribute knowledge and
experience as cornerstones to boost effective and seamless collaboration
between humans and AI for data analysis and communication in the coming era of
large-scale AI systems.
Date: Friday, 3 May 2024
Time: 3:00pm - 5:00pm
Venue: Room 5501
Lifts 25/26
Committee Members: Prof. Huamin Qu (Supervisor)
Prof. Chiew-Lan Tai (Chairperson)
Prof. Cunsheng Ding
Dr. Yangqiu Song